Modeling and Analysis of Air-to-Ground Cellular KPIs in a 5G Testbed using Android Smartphones
Simran Singh, An{\i}l G\"urses, \"Ozg\"ur \"Ozdemir, Ram Asokan, Mihail L. Sichitiu, \.Ismail G\"uven\c{c}, Rudra Dutta, Magreth Mushi

TL;DR
This study models and analyzes air-to-ground cellular KPIs in a 5G testbed using real UAV flight data, enhancing the fidelity of UAV communication system simulations.
Contribution
It provides empirical data and machine learning models of cellular KPIs based on real UAV flights, improving system design and deployment accuracy.
Findings
KPI variations depend on UAV altitude, distance, and orientation.
Machine learning models accurately predict KPI behavior from UAV position.
Real-world data improves over theoretical models for UAV cellular communication.
Abstract
The integration of cellular communication with Unmanned Aerial Vehicles (UAVs) extends the range of command and control and payload communications of autonomous UAV applications. Accurate modeling of this air-to-ground wireless environment aids UAV mission planning. Models built on and insights obtained from real-life experiments intricately capture the variations in air-to-ground link quality with UAV position, offering more fidelity for simulations and system design than those that rely on generic theoretical models designed for ground scenarios or ray-tracing simulations. In this work, we conduct aerial flights at the Aerial Experimentation and Research Platform for Advanced Wireless (AERPAW) Lake Wheeler testbed to study the variation in key performance indicators (KPIs) of a private 4G/5G cellular base station (BS) with the UAV's altitude, distance from the BS, elevation, and…
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